Markov basis for design of experiments with three-level factors
Methodology
2009-11-22 v2
Abstract
We consider Markov basis arising from fractional factorial designs with three-level factors. Once we have a Markov basis, values for various conditional tests are estimated by the Markov chain Monte Carlo procedure. For designed experiments with a single count observation for each run, we formulate a generalized linear model and consider a sample space with the same sufficient statistics to the observed data. Each model is characterized by a covariate matrix, which is constructed from the main and the interaction effects we intend to measure. We investigate fractional factorial designs with runs noting correspondences to the models for contingency tables.
Keywords
Cite
@article{arxiv.0709.4323,
title = {Markov basis for design of experiments with three-level factors},
author = {Satoshi Aoki and Akimichi Takemura},
journal= {arXiv preprint arXiv:0709.4323},
year = {2009}
}
Comments
17 pages